SOTAVerified

Empirical Likelihood for Contextual Bandits

2019-06-07NeurIPS 2020Code Available0· sign in to hype

Nikos Karampatziakis, John Langford, Paul Mineiro

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We propose an estimator and confidence interval for computing the value of a policy from off-policy data in the contextual bandit setting. To this end we apply empirical likelihood techniques to formulate our estimator and confidence interval as simple convex optimization problems. Using the lower bound of our confidence interval, we then propose an off-policy policy optimization algorithm that searches for policies with large reward lower bound. We empirically find that both our estimator and confidence interval improve over previous proposals in finite sample regimes. Finally, the policy optimization algorithm we propose outperforms a strong baseline system for learning from off-policy data.

Tasks

Reproductions